Abstract

Most people touch their faces unconsciously, for instance to scratch an itch or to rest one’s chin in their hands. To reduce the spread of the novel coronavirus (COVID-19), public health officials recommend against touching one’s face, as the virus is transmitted through mucous membranes in the mouth, nose and eyes. Students, office workers, medical personnel and people on trains were found to touch their faces between 9 and 23 times per hour. This paper introduces FaceGuard, a system that utilizes deep learning to predict hand movements that result in touching the face, and provides sensory feedback to stop the user from touching the face. The system utilizes an inertial measurement unit (IMU) to obtain features that characterize hand movement involving face touching. Time-series data can be efficiently classified using 1D-Convolutional Neural Network (CNN) with minimal feature engineering; 1D-CNN filters automatically extract temporal features in IMU data. Thus, a 1D-CNN based prediction model is developed and trained with data from 4,800 trials recorded from 40 participants. Training data are collected for hand movements involving face touching during various everyday activities such as sitting, standing, or walking. Results showed that while the average time needed to touch the face is 1,200 ms, a prediction accuracy of more than 92% is achieved with less than 550 ms of IMU data. As for the sensory response, the paper presents a psychophysical experiment to compare the response time for three sensory feedback modalities, namely visual, auditory, and vibrotactile. Results demonstrate that the response time is significantly smaller for vibrotactile feedback (427.3 ms) compared to visual (561.70 ms) and auditory (520.97 ms). Furthermore, the success rate (to avoid face touching) is also statistically higher for vibrotactile and auditory feedback compared to visual feedback. These results demonstrate the feasibility of predicting a hand movement and providing timely sensory feedback within less than a second in order to avoid face touching.

Highlights

  • Coronavirus disease (COVID-19), caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), has spread worldwide, with more than 88 million cases and 1.9 million fatalities as of January, 2021 WHO (2020)

  • With a focus on prediction rather than classification, the period for data collection in real time becomes a significant parameter to select. This window size limits the collection of data from the inertial measurement unit (IMU) during a hand movement

  • As expected, increasing the window size provides the Convolutional Neural Network (CNN)-based model with further information about the hand movement and improves the prediction accuracy

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Summary

Introduction

Coronavirus disease (COVID-19), caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), has spread worldwide, with more than 88 million cases and 1.9 million fatalities as of January, 2021 WHO (2020). Face touching has been linked to emotional and cognitive processes Barroso et al (1980), Mueller et al (2019), increasing with attentiveness while tasks are being performed, as well as with increasing pressure and anxiety Harrigan (1985). Given that the primary source of COVID-19 transmission is through contact with respiratory droplets [via the nose, mouth, or eyes, either directly from another individual or picked up from a surface Pisharady and Saerbeck (2015)], avoiding face touching is of a great value

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